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Main Authors: Panchal, Kunjal, Choudhary, Sunav, Parikh, Nisarg, Zhang, Lijun, Guan, Hui
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2211.15281
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author Panchal, Kunjal
Choudhary, Sunav
Parikh, Nisarg
Zhang, Lijun
Guan, Hui
author_facet Panchal, Kunjal
Choudhary, Sunav
Parikh, Nisarg
Zhang, Lijun
Guan, Hui
contents Personalization in Federated Learning (FL) aims to modify a collaboratively trained global model according to each client. Current approaches to personalization in FL are at a coarse granularity, i.e. all the input instances of a client use the same personalized model. This ignores the fact that some instances are more accurately handled by the global model due to better generalizability. To address this challenge, this work proposes Flow, a fine-grained stateless personalized FL approach. Flow creates dynamic personalized models by learning a routing mechanism that determines whether an input instance prefers the local parameters or its global counterpart. Thus, Flow introduces per-instance routing in addition to leveraging per-client personalization to improve accuracies at each client. Further, Flow is stateless which makes it unnecessary for a client to retain its personalized state across FL rounds. This makes Flow practical for large-scale FL settings and friendly to newly joined clients. Evaluations on Stackoverflow, Reddit, and EMNIST datasets demonstrate the superiority in prediction accuracy of Flow over state-of-the-art non-personalized and only per-client personalized approaches to FL.
format Preprint
id arxiv_https___arxiv_org_abs_2211_15281
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Flow: Per-Instance Personalized Federated Learning Through Dynamic Routing
Panchal, Kunjal
Choudhary, Sunav
Parikh, Nisarg
Zhang, Lijun
Guan, Hui
Machine Learning
Personalization in Federated Learning (FL) aims to modify a collaboratively trained global model according to each client. Current approaches to personalization in FL are at a coarse granularity, i.e. all the input instances of a client use the same personalized model. This ignores the fact that some instances are more accurately handled by the global model due to better generalizability. To address this challenge, this work proposes Flow, a fine-grained stateless personalized FL approach. Flow creates dynamic personalized models by learning a routing mechanism that determines whether an input instance prefers the local parameters or its global counterpart. Thus, Flow introduces per-instance routing in addition to leveraging per-client personalization to improve accuracies at each client. Further, Flow is stateless which makes it unnecessary for a client to retain its personalized state across FL rounds. This makes Flow practical for large-scale FL settings and friendly to newly joined clients. Evaluations on Stackoverflow, Reddit, and EMNIST datasets demonstrate the superiority in prediction accuracy of Flow over state-of-the-art non-personalized and only per-client personalized approaches to FL.
title Flow: Per-Instance Personalized Federated Learning Through Dynamic Routing
topic Machine Learning
url https://arxiv.org/abs/2211.15281